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A WEAKLY LABELED APPROACH FOR BREAST TISSUE SEGMENTATION AND BREAST DENSITY ESTIMATION IN DIGITAL MAMMOGRAPHY

机译:数字乳房X线照相术中乳腺组织分割和乳房密度估计的弱标记方法

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Breast tissue segmentation is a fundamental task in digital mammography. Commonly, this segmentation is applied prior to breast density estimation. However, observations show a strong correlation between the segmentation parameters and the breast density, resulting in a chicken and egg problem. This paper presents a new method for breast segmentation, based on training with weakly labeled data, namely breast density categories. To this end, a Fuzzy-logic module is employed computing an adaptive parameter for segmentation. The suggested scheme consists of a feedback stage where a preliminary segmentation is used to allow extracting domain specific features from an early estimation of the tissue regions. Selected features are then fed into a fuzzy logic module to yield an updated threshold for segmentation. Our evaluation is based on 50 fibroglandular delineated images and on breast density classification, obtained on a large data set of 1243 full-field digital mammograms. The data set contained images from different devices. The proposed analysis provided an average Jaccard spatial similarity coefficient of 0.4 with improvement of this measure in 70% of cases where the suggested module was applied. In breast density classification, average classification accuracy of 75% was obtained, which significantly improved the baseline method (67.4%). Major improvement is obtained in low breast densities where higher threshold levels rejects false positive regions. These results show a promise for the clinical application of this method in breast segmentation, without the need for laborious tissue annotation.
机译:乳房组织分割是数字乳房X线摄影的基本任务。通常,在乳房密度估计之前应用这种分割。然而,观察结果显示分割参数和乳房密度之间的强烈相关性,导致鸡肉和蛋问题。本文提出了一种新的乳房分割方法,基于弱标记数据的培训,即乳房密度类别。为此,采用模糊逻辑模块计算用于分割的自适应参数。建议的方案包括反馈阶段,其中使用初步分割来允许从组织区域的早期估计中提取域特定特征。然后将所选功能馈入模糊逻辑模块,以产生用于分割的更新阈值。我们的评价基于50个纤维族描绘图像和乳房密度分类,在大型数据集1243全场数字乳房X光图上获得。数据集包含来自不同设备的图像。所提出的分析提供了平均Jaccard空间相似度系数0.4,随着应用建议模块的70%的情况下,在70%的情况下改善了这一措施。在乳房密度分类中,获得了75%的平均分类精度,显着改善了基线方法(67.4%)。在低乳房密度中获得重大改进,其中阈值水平更高的阈值水平抑制了假阳性区域。这些结果表明了这种方法在乳房分割中的临床应用的承诺,而不需要艰苦的组织注释。

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